# -*- coding: utf-8 -*-
# Copyright 2025 Google LLC
#
# Licensed under the Apache License, Version 2.0 (the "License");
# you may not use this file except in compliance with the License.
# You may obtain a copy of the License at
#
#     http://www.apache.org/licenses/LICENSE-2.0
#
# Unless required by applicable law or agreed to in writing, software
# distributed under the License is distributed on an "AS IS" BASIS,
# WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
# See the License for the specific language governing permissions and
# limitations under the License.
#
from __future__ import annotations

from typing import MutableMapping, MutableSequence

import proto  # type: ignore

from google.cloud.aiplatform_v1.types import openapi
from google.protobuf import struct_pb2  # type: ignore
from google.type import latlng_pb2  # type: ignore


__protobuf__ = proto.module(
    package="google.cloud.aiplatform.v1",
    manifest={
        "Tool",
        "UrlContext",
        "FunctionDeclaration",
        "FunctionCall",
        "FunctionResponsePart",
        "FunctionResponseBlob",
        "FunctionResponseFileData",
        "FunctionResponse",
        "ExecutableCode",
        "CodeExecutionResult",
        "Retrieval",
        "VertexRagStore",
        "VertexAISearch",
        "GoogleSearchRetrieval",
        "GoogleMaps",
        "EnterpriseWebSearch",
        "DynamicRetrievalConfig",
        "ToolConfig",
        "FunctionCallingConfig",
        "RetrievalConfig",
        "RagRetrievalConfig",
    },
)


class Tool(proto.Message):
    r"""Tool details that the model may use to generate response.

    A ``Tool`` is a piece of code that enables the system to interact
    with external systems to perform an action, or set of actions,
    outside of knowledge and scope of the model. A Tool object should
    contain exactly one type of Tool (e.g FunctionDeclaration, Retrieval
    or GoogleSearchRetrieval).

    Attributes:
        function_declarations (MutableSequence[google.cloud.aiplatform_v1.types.FunctionDeclaration]):
            Optional. Function tool type. One or more function
            declarations to be passed to the model along with the
            current user query. Model may decide to call a subset of
            these functions by populating
            [FunctionCall][google.cloud.aiplatform.v1.Part.function_call]
            in the response. User should provide a
            [FunctionResponse][google.cloud.aiplatform.v1.Part.function_response]
            for each function call in the next turn. Based on the
            function responses, Model will generate the final response
            back to the user. Maximum 128 function declarations can be
            provided.
        retrieval (google.cloud.aiplatform_v1.types.Retrieval):
            Optional. Retrieval tool type.
            System will always execute the provided
            retrieval tool(s) to get external knowledge to
            answer the prompt. Retrieval results are
            presented to the model for generation.
        google_search (google.cloud.aiplatform_v1.types.Tool.GoogleSearch):
            Optional. GoogleSearch tool type.
            Tool to support Google Search in Model. Powered
            by Google.
        google_search_retrieval (google.cloud.aiplatform_v1.types.GoogleSearchRetrieval):
            Optional. GoogleSearchRetrieval tool type.
            Specialized retrieval tool that is powered by
            Google search.
        google_maps (google.cloud.aiplatform_v1.types.GoogleMaps):
            Optional. GoogleMaps tool type.
            Tool to support Google Maps in Model.
        enterprise_web_search (google.cloud.aiplatform_v1.types.EnterpriseWebSearch):
            Optional. Tool to support searching public
            web data, powered by Vertex AI Search and Sec4
            compliance.
        code_execution (google.cloud.aiplatform_v1.types.Tool.CodeExecution):
            Optional. CodeExecution tool type.
            Enables the model to execute code as part of
            generation.
        url_context (google.cloud.aiplatform_v1.types.UrlContext):
            Optional. Tool to support URL context
            retrieval.
        computer_use (google.cloud.aiplatform_v1.types.Tool.ComputerUse):
            Optional. Tool to support the model
            interacting directly with the computer. If
            enabled, it automatically populates computer-use
            specific Function Declarations.
    """

    class PhishBlockThreshold(proto.Enum):
        r"""These are available confidence level user can set to block
        malicious urls with chosen confidence and above. For
        understanding different confidence of webrisk, please refer to
        https://cloud.google.com/web-risk/docs/reference/rpc/google.cloud.webrisk.v1eap1#confidencelevel

        Values:
            PHISH_BLOCK_THRESHOLD_UNSPECIFIED (0):
                Defaults to unspecified.
            BLOCK_LOW_AND_ABOVE (30):
                Blocks Low and above confidence URL that is
                risky.
            BLOCK_MEDIUM_AND_ABOVE (40):
                Blocks Medium and above confidence URL that
                is risky.
            BLOCK_HIGH_AND_ABOVE (50):
                Blocks High and above confidence URL that is
                risky.
            BLOCK_HIGHER_AND_ABOVE (55):
                Blocks Higher and above confidence URL that
                is risky.
            BLOCK_VERY_HIGH_AND_ABOVE (60):
                Blocks Very high and above confidence URL
                that is risky.
            BLOCK_ONLY_EXTREMELY_HIGH (100):
                Blocks Extremely high confidence URL that is
                risky.
        """

        PHISH_BLOCK_THRESHOLD_UNSPECIFIED = 0
        BLOCK_LOW_AND_ABOVE = 30
        BLOCK_MEDIUM_AND_ABOVE = 40
        BLOCK_HIGH_AND_ABOVE = 50
        BLOCK_HIGHER_AND_ABOVE = 55
        BLOCK_VERY_HIGH_AND_ABOVE = 60
        BLOCK_ONLY_EXTREMELY_HIGH = 100

    class GoogleSearch(proto.Message):
        r"""GoogleSearch tool type.
        Tool to support Google Search in Model. Powered by Google.


        .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

        Attributes:
            exclude_domains (MutableSequence[str]):
                Optional. List of domains to be excluded from the search
                results. The default limit is 2000 domains. Example:
                ["amazon.com", "facebook.com"].
            blocking_confidence (google.cloud.aiplatform_v1.types.Tool.PhishBlockThreshold):
                Optional. Sites with confidence level chosen
                & above this value will be blocked from the
                search results.

                This field is a member of `oneof`_ ``_blocking_confidence``.
        """

        exclude_domains: MutableSequence[str] = proto.RepeatedField(
            proto.STRING,
            number=3,
        )
        blocking_confidence: "Tool.PhishBlockThreshold" = proto.Field(
            proto.ENUM,
            number=4,
            optional=True,
            enum="Tool.PhishBlockThreshold",
        )

    class CodeExecution(proto.Message):
        r"""Tool that executes code generated by the model, and automatically
        returns the result to the model.

        See also [ExecutableCode]and [CodeExecutionResult] which are input
        and output to this tool.

        """

    class ComputerUse(proto.Message):
        r"""Tool to support computer use.

        Attributes:
            environment (google.cloud.aiplatform_v1.types.Tool.ComputerUse.Environment):
                Required. The environment being operated.
            excluded_predefined_functions (MutableSequence[str]):
                Optional. By default, `predefined
                functions <https://cloud.google.com/vertex-ai/generative-ai/docs/computer-use#supported-actions>`__
                are included in the final model call. Some of them can be
                explicitly excluded from being automatically included. This
                can serve two purposes:

                1. Using a more restricted / different action space.
                2. Improving the definitions / instructions of predefined
                   functions.
        """

        class Environment(proto.Enum):
            r"""Represents the environment being operated, such as a web
            browser.

            Values:
                ENVIRONMENT_UNSPECIFIED (0):
                    Defaults to browser.
                ENVIRONMENT_BROWSER (1):
                    Operates in a web browser.
            """

            ENVIRONMENT_UNSPECIFIED = 0
            ENVIRONMENT_BROWSER = 1

        environment: "Tool.ComputerUse.Environment" = proto.Field(
            proto.ENUM,
            number=1,
            enum="Tool.ComputerUse.Environment",
        )
        excluded_predefined_functions: MutableSequence[str] = proto.RepeatedField(
            proto.STRING,
            number=2,
        )

    function_declarations: MutableSequence["FunctionDeclaration"] = proto.RepeatedField(
        proto.MESSAGE,
        number=1,
        message="FunctionDeclaration",
    )
    retrieval: "Retrieval" = proto.Field(
        proto.MESSAGE,
        number=2,
        message="Retrieval",
    )
    google_search: GoogleSearch = proto.Field(
        proto.MESSAGE,
        number=7,
        message=GoogleSearch,
    )
    google_search_retrieval: "GoogleSearchRetrieval" = proto.Field(
        proto.MESSAGE,
        number=3,
        message="GoogleSearchRetrieval",
    )
    google_maps: "GoogleMaps" = proto.Field(
        proto.MESSAGE,
        number=5,
        message="GoogleMaps",
    )
    enterprise_web_search: "EnterpriseWebSearch" = proto.Field(
        proto.MESSAGE,
        number=6,
        message="EnterpriseWebSearch",
    )
    code_execution: CodeExecution = proto.Field(
        proto.MESSAGE,
        number=4,
        message=CodeExecution,
    )
    url_context: "UrlContext" = proto.Field(
        proto.MESSAGE,
        number=8,
        message="UrlContext",
    )
    computer_use: ComputerUse = proto.Field(
        proto.MESSAGE,
        number=11,
        message=ComputerUse,
    )


class UrlContext(proto.Message):
    r"""Tool to support URL context."""


class FunctionDeclaration(proto.Message):
    r"""Structured representation of a function declaration as defined by
    the `OpenAPI 3.0
    specification <https://spec.openapis.org/oas/v3.0.3>`__. Included in
    this declaration are the function name, description, parameters and
    response type. This FunctionDeclaration is a representation of a
    block of code that can be used as a ``Tool`` by the model and
    executed by the client.

    Attributes:
        name (str):
            Required. The name of the function to call.
            Must start with a letter or an underscore.
            Must be a-z, A-Z, 0-9, or contain underscores,
            dots and dashes, with a maximum length of 64.
        description (str):
            Optional. Description and purpose of the
            function. Model uses it to decide how and
            whether to call the function.
        parameters (google.cloud.aiplatform_v1.types.Schema):
            Optional. Describes the parameters to this
            function in JSON Schema Object format. Reflects
            the Open API 3.03 Parameter Object. string Key:
            the name of the parameter. Parameter names are
            case sensitive. Schema Value: the Schema
            defining the type used for the parameter. For
            function with no parameters, this can be left
            unset. Parameter names must start with a letter
            or an underscore and must only contain chars
            a-z, A-Z, 0-9, or underscores with a maximum
            length of 64. Example with 1 required and 1
            optional parameter: type: OBJECT properties:

             param1:

               type: STRING
             param2:

               type: INTEGER
            required:

             - param1
        parameters_json_schema (google.protobuf.struct_pb2.Value):
            Optional. Describes the parameters to the function in JSON
            Schema format. The schema must describe an object where the
            properties are the parameters to the function. For example:

            ::

               {
                 "type": "object",
                 "properties": {
                   "name": { "type": "string" },
                   "age": { "type": "integer" }
                 },
                 "additionalProperties": false,
                 "required": ["name", "age"],
                 "propertyOrdering": ["name", "age"]
               }

            This field is mutually exclusive with ``parameters``.
        response (google.cloud.aiplatform_v1.types.Schema):
            Optional. Describes the output from this
            function in JSON Schema format. Reflects the
            Open API 3.03 Response Object. The Schema
            defines the type used for the response value of
            the function.
        response_json_schema (google.protobuf.struct_pb2.Value):
            Optional. Describes the output from this function in JSON
            Schema format. The value specified by the schema is the
            response value of the function.

            This field is mutually exclusive with ``response``.
    """

    name: str = proto.Field(
        proto.STRING,
        number=1,
    )
    description: str = proto.Field(
        proto.STRING,
        number=2,
    )
    parameters: openapi.Schema = proto.Field(
        proto.MESSAGE,
        number=3,
        message=openapi.Schema,
    )
    parameters_json_schema: struct_pb2.Value = proto.Field(
        proto.MESSAGE,
        number=5,
        message=struct_pb2.Value,
    )
    response: openapi.Schema = proto.Field(
        proto.MESSAGE,
        number=4,
        message=openapi.Schema,
    )
    response_json_schema: struct_pb2.Value = proto.Field(
        proto.MESSAGE,
        number=6,
        message=struct_pb2.Value,
    )


class FunctionCall(proto.Message):
    r"""A predicted [FunctionCall] returned from the model that contains a
    string representing the [FunctionDeclaration.name] and a structured
    JSON object containing the parameters and their values.

    Attributes:
        name (str):
            Required. The name of the function to call. Matches
            [FunctionDeclaration.name].
        args (google.protobuf.struct_pb2.Struct):
            Optional. Required. The function parameters and values in
            JSON object format. See [FunctionDeclaration.parameters] for
            parameter details.
    """

    name: str = proto.Field(
        proto.STRING,
        number=1,
    )
    args: struct_pb2.Struct = proto.Field(
        proto.MESSAGE,
        number=2,
        message=struct_pb2.Struct,
    )


class FunctionResponsePart(proto.Message):
    r"""A datatype containing media that is part of a ``FunctionResponse``
    message.

    A ``FunctionResponsePart`` consists of data which has an associated
    datatype. A ``FunctionResponsePart`` can only contain one of the
    accepted types in ``FunctionResponsePart.data``.

    A ``FunctionResponsePart`` must have a fixed IANA MIME type
    identifying the type and subtype of the media if the ``inline_data``
    field is filled with raw bytes.

    This message has `oneof`_ fields (mutually exclusive fields).
    For each oneof, at most one member field can be set at the same time.
    Setting any member of the oneof automatically clears all other
    members.

    .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

    Attributes:
        inline_data (google.cloud.aiplatform_v1.types.FunctionResponseBlob):
            Inline media bytes.

            This field is a member of `oneof`_ ``data``.
        file_data (google.cloud.aiplatform_v1.types.FunctionResponseFileData):
            URI based data.

            This field is a member of `oneof`_ ``data``.
    """

    inline_data: "FunctionResponseBlob" = proto.Field(
        proto.MESSAGE,
        number=1,
        oneof="data",
        message="FunctionResponseBlob",
    )
    file_data: "FunctionResponseFileData" = proto.Field(
        proto.MESSAGE,
        number=2,
        oneof="data",
        message="FunctionResponseFileData",
    )


class FunctionResponseBlob(proto.Message):
    r"""Raw media bytes for function response.

    Text should not be sent as raw bytes, use the 'text' field.

    Attributes:
        mime_type (str):
            Required. The IANA standard MIME type of the
            source data.
        data (bytes):
            Required. Raw bytes.
        display_name (str):
            Optional. Display name of the blob.

            Used to provide a label or filename to distinguish blobs.

            This field is only returned in PromptMessage for prompt
            management. It is currently used in the Gemini
            GenerateContent calls only when server side tools
            (code_execution, google_search, and url_context) are
            enabled.
    """

    mime_type: str = proto.Field(
        proto.STRING,
        number=1,
    )
    data: bytes = proto.Field(
        proto.BYTES,
        number=2,
    )
    display_name: str = proto.Field(
        proto.STRING,
        number=4,
    )


class FunctionResponseFileData(proto.Message):
    r"""URI based data for function response.

    Attributes:
        mime_type (str):
            Required. The IANA standard MIME type of the
            source data.
        file_uri (str):
            Required. URI.
        display_name (str):
            Optional. Display name of the file data.

            Used to provide a label or filename to distinguish file
            datas.

            This field is only returned in PromptMessage for prompt
            management. It is currently used in the Gemini
            GenerateContent calls only when server side tools
            (code_execution, google_search, and url_context) are
            enabled.
    """

    mime_type: str = proto.Field(
        proto.STRING,
        number=1,
    )
    file_uri: str = proto.Field(
        proto.STRING,
        number=2,
    )
    display_name: str = proto.Field(
        proto.STRING,
        number=3,
    )


class FunctionResponse(proto.Message):
    r"""The result output from a [FunctionCall] that contains a string
    representing the [FunctionDeclaration.name] and a structured JSON
    object containing any output from the function is used as context to
    the model. This should contain the result of a [FunctionCall] made
    based on model prediction.

    Attributes:
        name (str):
            Required. The name of the function to call. Matches
            [FunctionDeclaration.name] and [FunctionCall.name].
        response (google.protobuf.struct_pb2.Struct):
            Required. The function response in JSON
            object format. Use "output" key to specify
            function output and "error" key to specify error
            details (if any). If "output" and "error" keys
            are not specified, then whole "response" is
            treated as function output.
        parts (MutableSequence[google.cloud.aiplatform_v1.types.FunctionResponsePart]):
            Optional. Ordered ``Parts`` that constitute a function
            response. Parts may have different IANA MIME types.
    """

    name: str = proto.Field(
        proto.STRING,
        number=1,
    )
    response: struct_pb2.Struct = proto.Field(
        proto.MESSAGE,
        number=2,
        message=struct_pb2.Struct,
    )
    parts: MutableSequence["FunctionResponsePart"] = proto.RepeatedField(
        proto.MESSAGE,
        number=4,
        message="FunctionResponsePart",
    )


class ExecutableCode(proto.Message):
    r"""Code generated by the model that is meant to be executed, and the
    result returned to the model.

    Generated when using the [FunctionDeclaration] tool and
    [FunctionCallingConfig] mode is set to [Mode.CODE].

    Attributes:
        language (google.cloud.aiplatform_v1.types.ExecutableCode.Language):
            Required. Programming language of the ``code``.
        code (str):
            Required. The code to be executed.
    """

    class Language(proto.Enum):
        r"""Supported programming languages for the generated code.

        Values:
            LANGUAGE_UNSPECIFIED (0):
                Unspecified language. This value should not
                be used.
            PYTHON (1):
                Python >= 3.10, with numpy and simpy
                available.
        """

        LANGUAGE_UNSPECIFIED = 0
        PYTHON = 1

    language: Language = proto.Field(
        proto.ENUM,
        number=1,
        enum=Language,
    )
    code: str = proto.Field(
        proto.STRING,
        number=2,
    )


class CodeExecutionResult(proto.Message):
    r"""Result of executing the [ExecutableCode].

    Always follows a ``part`` containing the [ExecutableCode].

    Attributes:
        outcome (google.cloud.aiplatform_v1.types.CodeExecutionResult.Outcome):
            Required. Outcome of the code execution.
        output (str):
            Optional. Contains stdout when code execution
            is successful, stderr or other description
            otherwise.
    """

    class Outcome(proto.Enum):
        r"""Enumeration of possible outcomes of the code execution.

        Values:
            OUTCOME_UNSPECIFIED (0):
                Unspecified status. This value should not be
                used.
            OUTCOME_OK (1):
                Code execution completed successfully.
            OUTCOME_FAILED (2):
                Code execution finished but with a failure. ``stderr``
                should contain the reason.
            OUTCOME_DEADLINE_EXCEEDED (3):
                Code execution ran for too long, and was
                cancelled. There may or may not be a partial
                output present.
        """

        OUTCOME_UNSPECIFIED = 0
        OUTCOME_OK = 1
        OUTCOME_FAILED = 2
        OUTCOME_DEADLINE_EXCEEDED = 3

    outcome: Outcome = proto.Field(
        proto.ENUM,
        number=1,
        enum=Outcome,
    )
    output: str = proto.Field(
        proto.STRING,
        number=2,
    )


class Retrieval(proto.Message):
    r"""Defines a retrieval tool that model can call to access
    external knowledge.

    This message has `oneof`_ fields (mutually exclusive fields).
    For each oneof, at most one member field can be set at the same time.
    Setting any member of the oneof automatically clears all other
    members.

    .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

    Attributes:
        vertex_ai_search (google.cloud.aiplatform_v1.types.VertexAISearch):
            Set to use data source powered by Vertex AI
            Search.

            This field is a member of `oneof`_ ``source``.
        vertex_rag_store (google.cloud.aiplatform_v1.types.VertexRagStore):
            Set to use data source powered by Vertex RAG
            store. User data is uploaded via the
            VertexRagDataService.

            This field is a member of `oneof`_ ``source``.
        disable_attribution (bool):
            Optional. Deprecated. This option is no
            longer supported.
    """

    vertex_ai_search: "VertexAISearch" = proto.Field(
        proto.MESSAGE,
        number=2,
        oneof="source",
        message="VertexAISearch",
    )
    vertex_rag_store: "VertexRagStore" = proto.Field(
        proto.MESSAGE,
        number=4,
        oneof="source",
        message="VertexRagStore",
    )
    disable_attribution: bool = proto.Field(
        proto.BOOL,
        number=3,
    )


class VertexRagStore(proto.Message):
    r"""Retrieve from Vertex RAG Store for grounding.

    .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

    Attributes:
        rag_resources (MutableSequence[google.cloud.aiplatform_v1.types.VertexRagStore.RagResource]):
            Optional. The representation of the rag
            source. It can be used to specify corpus only or
            ragfiles. Currently only support one corpus or
            multiple files from one corpus. In the future we
            may open up multiple corpora support.
        similarity_top_k (int):
            Optional. Number of top k results to return
            from the selected corpora.

            This field is a member of `oneof`_ ``_similarity_top_k``.
        vector_distance_threshold (float):
            Optional. Only return results with vector
            distance smaller than the threshold.

            This field is a member of `oneof`_ ``_vector_distance_threshold``.
        rag_retrieval_config (google.cloud.aiplatform_v1.types.RagRetrievalConfig):
            Optional. The retrieval config for the Rag
            query.
    """

    class RagResource(proto.Message):
        r"""The definition of the Rag resource.

        Attributes:
            rag_corpus (str):
                Optional. RagCorpora resource name. Format:
                ``projects/{project}/locations/{location}/ragCorpora/{rag_corpus}``
            rag_file_ids (MutableSequence[str]):
                Optional. rag_file_id. The files should be in the same
                rag_corpus set in rag_corpus field.
        """

        rag_corpus: str = proto.Field(
            proto.STRING,
            number=1,
        )
        rag_file_ids: MutableSequence[str] = proto.RepeatedField(
            proto.STRING,
            number=2,
        )

    rag_resources: MutableSequence[RagResource] = proto.RepeatedField(
        proto.MESSAGE,
        number=4,
        message=RagResource,
    )
    similarity_top_k: int = proto.Field(
        proto.INT32,
        number=2,
        optional=True,
    )
    vector_distance_threshold: float = proto.Field(
        proto.DOUBLE,
        number=3,
        optional=True,
    )
    rag_retrieval_config: "RagRetrievalConfig" = proto.Field(
        proto.MESSAGE,
        number=6,
        message="RagRetrievalConfig",
    )


class VertexAISearch(proto.Message):
    r"""Retrieve from Vertex AI Search datastore or engine for
    grounding. datastore and engine are mutually exclusive. See
    https://cloud.google.com/products/agent-builder

    Attributes:
        datastore (str):
            Optional. Fully-qualified Vertex AI Search data store
            resource ID. Format:
            ``projects/{project}/locations/{location}/collections/{collection}/dataStores/{dataStore}``
        engine (str):
            Optional. Fully-qualified Vertex AI Search engine resource
            ID. Format:
            ``projects/{project}/locations/{location}/collections/{collection}/engines/{engine}``
        max_results (int):
            Optional. Number of search results to return
            per query. The default value is 10.
            The maximumm allowed value is 10.
        filter (str):
            Optional. Filter strings to be passed to the
            search API.
        data_store_specs (MutableSequence[google.cloud.aiplatform_v1.types.VertexAISearch.DataStoreSpec]):
            Specifications that define the specific
            DataStores to be searched, along with
            configurations for those data stores. This is
            only considered for Engines with multiple data
            stores.
            It should only be set if engine is used.
    """

    class DataStoreSpec(proto.Message):
        r"""Define data stores within engine to filter on in a search
        call and configurations for those data stores. For more
        information, see
        https://cloud.google.com/generative-ai-app-builder/docs/reference/rpc/google.cloud.discoveryengine.v1#datastorespec

        Attributes:
            data_store (str):
                Full resource name of DataStore, such as Format:
                ``projects/{project}/locations/{location}/collections/{collection}/dataStores/{dataStore}``
            filter (str):
                Optional. Filter specification to filter documents in the
                data store specified by data_store field. For more
                information on filtering, see
                `Filtering <https://cloud.google.com/generative-ai-app-builder/docs/filter-search-metadata>`__
        """

        data_store: str = proto.Field(
            proto.STRING,
            number=1,
        )
        filter: str = proto.Field(
            proto.STRING,
            number=2,
        )

    datastore: str = proto.Field(
        proto.STRING,
        number=1,
    )
    engine: str = proto.Field(
        proto.STRING,
        number=2,
    )
    max_results: int = proto.Field(
        proto.INT32,
        number=3,
    )
    filter: str = proto.Field(
        proto.STRING,
        number=4,
    )
    data_store_specs: MutableSequence[DataStoreSpec] = proto.RepeatedField(
        proto.MESSAGE,
        number=5,
        message=DataStoreSpec,
    )


class GoogleSearchRetrieval(proto.Message):
    r"""Tool to retrieve public web data for grounding, powered by
    Google.

    Attributes:
        dynamic_retrieval_config (google.cloud.aiplatform_v1.types.DynamicRetrievalConfig):
            Specifies the dynamic retrieval configuration
            for the given source.
    """

    dynamic_retrieval_config: "DynamicRetrievalConfig" = proto.Field(
        proto.MESSAGE,
        number=2,
        message="DynamicRetrievalConfig",
    )


class GoogleMaps(proto.Message):
    r"""Tool to retrieve public maps data for grounding, powered by
    Google.

    Attributes:
        enable_widget (bool):
            If true, include the widget context token in
            the response.
    """

    enable_widget: bool = proto.Field(
        proto.BOOL,
        number=1,
    )


class EnterpriseWebSearch(proto.Message):
    r"""Tool to search public web data, powered by Vertex AI Search
    and Sec4 compliance.


    .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

    Attributes:
        exclude_domains (MutableSequence[str]):
            Optional. List of domains to be excluded from
            the search results. The default limit is 2000
            domains.
        blocking_confidence (google.cloud.aiplatform_v1.types.Tool.PhishBlockThreshold):
            Optional. Sites with confidence level chosen
            & above this value will be blocked from the
            search results.

            This field is a member of `oneof`_ ``_blocking_confidence``.
    """

    exclude_domains: MutableSequence[str] = proto.RepeatedField(
        proto.STRING,
        number=1,
    )
    blocking_confidence: "Tool.PhishBlockThreshold" = proto.Field(
        proto.ENUM,
        number=2,
        optional=True,
        enum="Tool.PhishBlockThreshold",
    )


class DynamicRetrievalConfig(proto.Message):
    r"""Describes the options to customize dynamic retrieval.

    .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

    Attributes:
        mode (google.cloud.aiplatform_v1.types.DynamicRetrievalConfig.Mode):
            The mode of the predictor to be used in
            dynamic retrieval.
        dynamic_threshold (float):
            Optional. The threshold to be used in dynamic
            retrieval. If not set, a system default value is
            used.

            This field is a member of `oneof`_ ``_dynamic_threshold``.
    """

    class Mode(proto.Enum):
        r"""The mode of the predictor to be used in dynamic retrieval.

        Values:
            MODE_UNSPECIFIED (0):
                Always trigger retrieval.
            MODE_DYNAMIC (1):
                Run retrieval only when system decides it is
                necessary.
        """

        MODE_UNSPECIFIED = 0
        MODE_DYNAMIC = 1

    mode: Mode = proto.Field(
        proto.ENUM,
        number=1,
        enum=Mode,
    )
    dynamic_threshold: float = proto.Field(
        proto.FLOAT,
        number=2,
        optional=True,
    )


class ToolConfig(proto.Message):
    r"""Tool config. This config is shared for all tools provided in
    the request.

    Attributes:
        function_calling_config (google.cloud.aiplatform_v1.types.FunctionCallingConfig):
            Optional. Function calling config.
        retrieval_config (google.cloud.aiplatform_v1.types.RetrievalConfig):
            Optional. Retrieval config.
    """

    function_calling_config: "FunctionCallingConfig" = proto.Field(
        proto.MESSAGE,
        number=1,
        message="FunctionCallingConfig",
    )
    retrieval_config: "RetrievalConfig" = proto.Field(
        proto.MESSAGE,
        number=2,
        message="RetrievalConfig",
    )


class FunctionCallingConfig(proto.Message):
    r"""Function calling config.

    Attributes:
        mode (google.cloud.aiplatform_v1.types.FunctionCallingConfig.Mode):
            Optional. Function calling mode.
        allowed_function_names (MutableSequence[str]):
            Optional. Function names to call. Only set when the Mode is
            ANY. Function names should match [FunctionDeclaration.name].
            With mode set to ANY, model will predict a function call
            from the set of function names provided.
    """

    class Mode(proto.Enum):
        r"""Function calling mode.

        Values:
            MODE_UNSPECIFIED (0):
                Unspecified function calling mode. This value
                should not be used.
            AUTO (1):
                Default model behavior, model decides to
                predict either function calls or natural
                language response.
            ANY (2):
                Model is constrained to always predicting function calls
                only. If "allowed_function_names" are set, the predicted
                function calls will be limited to any one of
                "allowed_function_names", else the predicted function calls
                will be any one of the provided "function_declarations".
            NONE (3):
                Model will not predict any function calls.
                Model behavior is same as when not passing any
                function declarations.
        """

        MODE_UNSPECIFIED = 0
        AUTO = 1
        ANY = 2
        NONE = 3

    mode: Mode = proto.Field(
        proto.ENUM,
        number=1,
        enum=Mode,
    )
    allowed_function_names: MutableSequence[str] = proto.RepeatedField(
        proto.STRING,
        number=2,
    )


class RetrievalConfig(proto.Message):
    r"""Retrieval config.

    .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

    Attributes:
        lat_lng (google.type.latlng_pb2.LatLng):
            The location of the user.

            This field is a member of `oneof`_ ``_lat_lng``.
        language_code (str):
            The language code of the user.

            This field is a member of `oneof`_ ``_language_code``.
    """

    lat_lng: latlng_pb2.LatLng = proto.Field(
        proto.MESSAGE,
        number=1,
        optional=True,
        message=latlng_pb2.LatLng,
    )
    language_code: str = proto.Field(
        proto.STRING,
        number=2,
        optional=True,
    )


class RagRetrievalConfig(proto.Message):
    r"""Specifies the context retrieval config.

    Attributes:
        top_k (int):
            Optional. The number of contexts to retrieve.
        filter (google.cloud.aiplatform_v1.types.RagRetrievalConfig.Filter):
            Optional. Config for filters.
        ranking (google.cloud.aiplatform_v1.types.RagRetrievalConfig.Ranking):
            Optional. Config for ranking and reranking.
    """

    class Filter(proto.Message):
        r"""Config for filters.

        This message has `oneof`_ fields (mutually exclusive fields).
        For each oneof, at most one member field can be set at the same time.
        Setting any member of the oneof automatically clears all other
        members.

        .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

        Attributes:
            vector_distance_threshold (float):
                Optional. Only returns contexts with vector
                distance smaller than the threshold.

                This field is a member of `oneof`_ ``vector_db_threshold``.
            vector_similarity_threshold (float):
                Optional. Only returns contexts with vector
                similarity larger than the threshold.

                This field is a member of `oneof`_ ``vector_db_threshold``.
            metadata_filter (str):
                Optional. String for metadata filtering.
        """

        vector_distance_threshold: float = proto.Field(
            proto.DOUBLE,
            number=3,
            oneof="vector_db_threshold",
        )
        vector_similarity_threshold: float = proto.Field(
            proto.DOUBLE,
            number=4,
            oneof="vector_db_threshold",
        )
        metadata_filter: str = proto.Field(
            proto.STRING,
            number=2,
        )

    class Ranking(proto.Message):
        r"""Config for ranking and reranking.

        This message has `oneof`_ fields (mutually exclusive fields).
        For each oneof, at most one member field can be set at the same time.
        Setting any member of the oneof automatically clears all other
        members.

        .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

        Attributes:
            rank_service (google.cloud.aiplatform_v1.types.RagRetrievalConfig.Ranking.RankService):
                Optional. Config for Rank Service.

                This field is a member of `oneof`_ ``ranking_config``.
            llm_ranker (google.cloud.aiplatform_v1.types.RagRetrievalConfig.Ranking.LlmRanker):
                Optional. Config for LlmRanker.

                This field is a member of `oneof`_ ``ranking_config``.
        """

        class RankService(proto.Message):
            r"""Config for Rank Service.

            .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

            Attributes:
                model_name (str):
                    Optional. The model name of the rank service. Format:
                    ``semantic-ranker-512@latest``

                    This field is a member of `oneof`_ ``_model_name``.
            """

            model_name: str = proto.Field(
                proto.STRING,
                number=1,
                optional=True,
            )

        class LlmRanker(proto.Message):
            r"""Config for LlmRanker.

            .. _oneof: https://proto-plus-python.readthedocs.io/en/stable/fields.html#oneofs-mutually-exclusive-fields

            Attributes:
                model_name (str):
                    Optional. The model name used for ranking. Format:
                    ``gemini-1.5-pro``

                    This field is a member of `oneof`_ ``_model_name``.
            """

            model_name: str = proto.Field(
                proto.STRING,
                number=1,
                optional=True,
            )

        rank_service: "RagRetrievalConfig.Ranking.RankService" = proto.Field(
            proto.MESSAGE,
            number=1,
            oneof="ranking_config",
            message="RagRetrievalConfig.Ranking.RankService",
        )
        llm_ranker: "RagRetrievalConfig.Ranking.LlmRanker" = proto.Field(
            proto.MESSAGE,
            number=3,
            oneof="ranking_config",
            message="RagRetrievalConfig.Ranking.LlmRanker",
        )

    top_k: int = proto.Field(
        proto.INT32,
        number=1,
    )
    filter: Filter = proto.Field(
        proto.MESSAGE,
        number=3,
        message=Filter,
    )
    ranking: Ranking = proto.Field(
        proto.MESSAGE,
        number=4,
        message=Ranking,
    )


__all__ = tuple(sorted(__protobuf__.manifest))
